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基于神经网络的电力系统短期负荷预测研究
引用本文:周佃民,管晓宏,孙婕,黄勇.基于神经网络的电力系统短期负荷预测研究[J].电网技术,2002,26(2):10-13,18.
作者姓名:周佃民  管晓宏  孙婕  黄勇
作者单位:西安交通大学,陕西省,西安市,710049
基金项目:国家杰出青年科学基金资助项目 ( 6 970 0 2 5 ),国家自然科学基金资助项目 ( 5 993715 0 )~~
摘    要:电力系统负荷预测是电力生产部门的重要工作之一,作者利用BP神经网络进行电力系统短期负荷预测,在保证有足够的训练样本的前提下,对预测模型进行合理分类,构造了相应于不同季节的周预测,日预测模型,并对输入变量的选择,特别是温度的选取问题,进行了讨论,在神经网络训练的过程中,往往会出现过拟合的现象,给预测的结果带来不利的影响,为此在训练过程中,将样本随机地分离为训练集和测试集来防止这个问题,典型算例的计算表明,该方法是有效的。

关 键 词:电力系统  短期负荷预测  神经网络  预测模型
文章编号:1000-3673(2002)02-0010-04

A SHORT-TERM LOAD FORECASTING SYSTEM BASED ON BP ARTIFICIAL NEURAL NETWORK
ZHOU Dian min,GUAN Xiao hong,SUN Jie,HUANG Yong.A SHORT-TERM LOAD FORECASTING SYSTEM BASED ON BP ARTIFICIAL NEURAL NETWORK[J].Power System Technology,2002,26(2):10-13,18.
Authors:ZHOU Dian min  GUAN Xiao hong  SUN Jie  HUANG Yong
Abstract:Load forecasting is an important task in the production of electric energy. In this paper, BP artificial neural network is applied in short term load forecasting.Under the condition of possessing enough training samples the models for forecasting are reasonably classified,the weekly and daily load forecasting models for different seasons are constructed. The selection of input variables, especially the selection of temperature, is discussed. In the training of neural network the over fitting often appears which affects the result of forecasting. To prevent this problem the entire data set is divided into training set and validation set. The result of typical calculation examples shows that the presented method is effective.
Keywords:short  term load forecasting  BP artificial neural network  correlation analysis  over  fitting  electricity market  
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